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    优化损失函数的低信噪比微地震信号去噪方法

    Optimized loss function-based denoising for low SNR microseismic data

    • 摘要: 检波器采集的实际微地震数据所包含的噪声类型复杂,数据的信噪比极低,传统的去噪方法无法清晰识别有效信号和噪声。为此,提出了一种优化损失函数约束的融合残差注意力的深度卷积自编码网络(RADNet)去噪方法。该方法使用深度卷积自编码结构对含噪数据进行局部特征提取并融合全局特征,利用注意力机制对不同特征进行权重分配,同时引入优化后的损失函数指导网络训练,最后基于残差网络构建去噪后的有效信号。为验证所提方法的有效性,分别将RADNet方法应用于仿真和实际微地震数据处理,并与现有的去噪方法进行对比分析。实验结果表明,RADNet去噪方法相较于基准的去噪卷积神经网络(DnCNN)和深度卷积自编码网络峰值信噪比(PSNR)分别提升了2.783 dB和8.099 dB,结构相似度(SSIM)分别提升了0.031和0.065。此外,与同类方法相比,提出的RADNet去噪方法均方误差(MSE)更低,并且能够更好地保留微地震数据中的有效信号及同相轴波形纹理细节。

       

      Abstract: The microseismic data containing diverse noises with extremely low signal-to-noise ratio cannot be effectively processed using traditional denoising methods. This paper proposes a deep convolutional auto-encoder network with optimized loss function constraints fused with residual attention (RADNet). The proposed method employs a deep convolutional auto-encoder structure for local feature extraction from noisy data and fuses global features to assign weights to different features using the attention mechanism. The optimized loss function is used to guide network training, and denoised signals are finally reconstructed based on the residual network. The application of RADNet and other denoising methods to simulated and real data demonstrates that RADNet improves peak signal-to-noise ratio (PSNR) by 2.783 and 8.099 dB and structural similarity (SSIM) by 0.031 and 0.065, respectively, compared to denoising convolutional neural network (DnCNN) and deep convolutional auto-encoder networks. Furthermore, RADNet decreases mean square error (MSE) and better preserves effective signals and texture details in microseismic waveform.

       

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